Prioritized EWMA control chart for time-sensitive process

Numerous challenges are faced by manufacturing industries in recent years, and process variation becomes the major source of poor quality in manufacturing control. A control chart in statistical process control (SPC) is a powerful tool to achieve stability and improvement in process capability...

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Main Author: Abduljabbar, Ali Fadhil
Format: Thesis
Language:English
Published: 2020
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Online Access:http://psasir.upm.edu.my/id/eprint/98849/1/IPM%202021%206%20UPMIR.pdf
http://psasir.upm.edu.my/id/eprint/98849/
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Institution: Universiti Putra Malaysia
Language: English
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spelling my.upm.eprints.988492022-10-12T01:56:02Z http://psasir.upm.edu.my/id/eprint/98849/ Prioritized EWMA control chart for time-sensitive process Abduljabbar, Ali Fadhil Numerous challenges are faced by manufacturing industries in recent years, and process variation becomes the major source of poor quality in manufacturing control. A control chart in statistical process control (SPC) is a powerful tool to achieve stability and improvement in process capability by reducing the variability. A manufacturer normally has to deal with time-series observations for monitoring the processes. New studies recommend using machine learning techniques due to the ability of these methods to automatically detect data patterns and to exploit such data patterns for future prediction and process improvement that usually evaluated through control charts. This research outlines the exponentially weighted moving average(EWMA)control charts that are applied on time series data of a dairy distribution process. Different data are simulated from the AR, MA, and ARMA processes. MATLAB -based simulations of EWMA control charts for AR(1), AR(2), MA(1), MA(2), ARMA(1,1), and ARMA(2,2) are performed for each process at various sample size and replication, The average run length (ARL) is a significant measure to assess the performance of the control chart. In this work, an ARL-based EWMA chart is discussed for monitoring the process variance for AR, MA, and ARMA processes. The efficiency of these charts is compared in terms of ARLs. The EWMA for ARMA(2,2) chart is more efficient than other discussed charts in terms of ARLs. A real example is given illustrating the proposed chart in the industry. The work shows that the EWMA control chart highlights several data points exceeding the upper control limit for AR(1), MA(1), and ARMA(1,1) processes, which indicates that the process is out of control at these points, while shows that the process is in control for AR(2), MA(2), and ARMA(2,2). Such analysis ensures a stable quality and shows that each production process requires to be maintained within a predefined time limit. Moreover, certain industries need such a capable system to detect the quality at an early stage before it over shifted. The results of applying the AR, MA, and ARMAshow that the developed model can succeed to approximate time series data patterns, and as the order of these models has increased the ability to fit observations become more accurate for the cases studied in the control chart. The significant insight of the presented model in this work is to focus on the benefits of using EWMA on different types of time series data. This action will enhance the quality of the products, by offering an effective solution that will lower the time consumed during the management of the transportation time of the product’s processes. 2020-09 Thesis NonPeerReviewed text en http://psasir.upm.edu.my/id/eprint/98849/1/IPM%202021%206%20UPMIR.pdf Abduljabbar, Ali Fadhil (2020) Prioritized EWMA control chart for time-sensitive process. Masters thesis, Universiti Putra Malaysia. Time-series analysis Exponentially weighted moving average
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
topic Time-series analysis
Exponentially weighted moving average
spellingShingle Time-series analysis
Exponentially weighted moving average
Abduljabbar, Ali Fadhil
Prioritized EWMA control chart for time-sensitive process
description Numerous challenges are faced by manufacturing industries in recent years, and process variation becomes the major source of poor quality in manufacturing control. A control chart in statistical process control (SPC) is a powerful tool to achieve stability and improvement in process capability by reducing the variability. A manufacturer normally has to deal with time-series observations for monitoring the processes. New studies recommend using machine learning techniques due to the ability of these methods to automatically detect data patterns and to exploit such data patterns for future prediction and process improvement that usually evaluated through control charts. This research outlines the exponentially weighted moving average(EWMA)control charts that are applied on time series data of a dairy distribution process. Different data are simulated from the AR, MA, and ARMA processes. MATLAB -based simulations of EWMA control charts for AR(1), AR(2), MA(1), MA(2), ARMA(1,1), and ARMA(2,2) are performed for each process at various sample size and replication, The average run length (ARL) is a significant measure to assess the performance of the control chart. In this work, an ARL-based EWMA chart is discussed for monitoring the process variance for AR, MA, and ARMA processes. The efficiency of these charts is compared in terms of ARLs. The EWMA for ARMA(2,2) chart is more efficient than other discussed charts in terms of ARLs. A real example is given illustrating the proposed chart in the industry. The work shows that the EWMA control chart highlights several data points exceeding the upper control limit for AR(1), MA(1), and ARMA(1,1) processes, which indicates that the process is out of control at these points, while shows that the process is in control for AR(2), MA(2), and ARMA(2,2). Such analysis ensures a stable quality and shows that each production process requires to be maintained within a predefined time limit. Moreover, certain industries need such a capable system to detect the quality at an early stage before it over shifted. The results of applying the AR, MA, and ARMAshow that the developed model can succeed to approximate time series data patterns, and as the order of these models has increased the ability to fit observations become more accurate for the cases studied in the control chart. The significant insight of the presented model in this work is to focus on the benefits of using EWMA on different types of time series data. This action will enhance the quality of the products, by offering an effective solution that will lower the time consumed during the management of the transportation time of the product’s processes.
format Thesis
author Abduljabbar, Ali Fadhil
author_facet Abduljabbar, Ali Fadhil
author_sort Abduljabbar, Ali Fadhil
title Prioritized EWMA control chart for time-sensitive process
title_short Prioritized EWMA control chart for time-sensitive process
title_full Prioritized EWMA control chart for time-sensitive process
title_fullStr Prioritized EWMA control chart for time-sensitive process
title_full_unstemmed Prioritized EWMA control chart for time-sensitive process
title_sort prioritized ewma control chart for time-sensitive process
publishDate 2020
url http://psasir.upm.edu.my/id/eprint/98849/1/IPM%202021%206%20UPMIR.pdf
http://psasir.upm.edu.my/id/eprint/98849/
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